特征选择数量和训练数据大小对基于机器学习的云安全算法准确性的影响——一项实证分析

Tanko Y. Mohammed
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摘要

背景:考虑到威胁的持续演变性质,机器学习(ML)技术已被证明在云环境中提供安全是非常有效的。影响机器学习模型准确性的一些因素包括使用的特定机器学习算法、样本量、选择的特征数量和用于训练的数据集部分。许多研究对这些因素的一个或多个组合对ML模型预测精度的影响进行了实证分析。然而,用于训练机器学习模型的整个数据集的部分以及从数据集中提取的特征数量在预测机器学习模型准确性方面的影响还有待研究。目的本研究使用普通最小二乘(OLS)回归来研究所选择的特征数量和训练数据的大小是否有助于预测基于机器学习的云安全方法所获得的准确性。方法:在本研究中,我们有两个自变量(选择的特征数量和训练数据的大小)和一个因变量(准确性)。我们最初选择了过去5年内进行的16项研究。我们提取了使用的特征数量、训练数据的大小和从这些研究中获得的准确性。从提取值中识别和丢弃异常值后,我们剩下12项研究。我们对这12项研究进行了分析。结果:我们的分析结果显示因变量和自变量之间存在微弱的正相关和负相关关系。尽管我们的分析显示变量之间存在微弱的正相关和负相关关系,但我们的模型在给定所选特征数量和训练数据大小的情况下,对于预测ML模型的准确性是有用的
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Impact of Number of Features Selected and Size of Training Data on the Accuracy of Machine Learning Based Cloud Security Algorithms – An Empirical Analysis
Background: Machine learning (ML) techniques have proven to be very effective in providing security in a cloud environment considering the continuous evolving nature of threats. Some of the factors that influence the accuracies of ML models include the specific ML algorithm used, sample size, the number of features selected and portion of dataset used for training. Many studies have conducted empirical analyses of the effects of one or more combination of these factors on predicted accuracies of ML models. However, the effect of the portion of the entire dataset that is used for training the ML model as well as the number of features extracted from the dataset in predicting the accuracy of an ML model is yet to be investigated.AimThis study uses Ordinary Least Square (OLS) regression to investigate if the number of features selected and the size of training data are useful in predicting the accuracies obtained in ML based approaches to cloud security.Method: For this research, wehave two independent variables (number of features selected and the size of training data) and one dependent variable (accuracy). We initially selected 16 (sixteen) studies conducted within the last 5 (five) years for our study. We extracted the number offeatures used, the size of the training data and the accuracies obtained from these studies. After identifying and discarding outliers from the extracted values, we were left with 12 (twelve) studies. We conducted our analysis on these 12 studies. Results: The result of our analysis shows that there exist a weak positive and negative relationships among the dependent and independent variables.Although, our analysis shows weak positive and negative relationships among the variables, our model is useful in predicting the accuracies of ML models given the number of features selected and the size of the training data
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